Article ID Journal Published Year Pages File Type
5363908 Applied Surface Science 2008 6 Pages PDF
Abstract
A prediction model of charge density of silicon nitride (SiN) films was constructed by using a generalized regression neural network (GRNN). The SiN film was deposited by a plasma enhanced chemical vapor deposition (PECVD) system and the deposition process was characterized by means of a statistical experiment. The prediction performance of GRNN was optimized by using a genetic algorithm (GA) and yielded an improved prediction of about 63% over statistical regression model. The optimized model was utilized to qualitatively investigate the effect of process parameters under various pressures. A refractive index model was effectively utilized to validate charge density variations. For the variations in process parameters, charge density was strongly dependent on [N-H]. Effects of NH3 or SiH4 flow rates were significant only under high collision rate. Effect of pressure-induced collision rate was noticeable only at higher NH3 flow rate or lower SiH4 flow rate.
Related Topics
Physical Sciences and Engineering Chemistry Physical and Theoretical Chemistry
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